Hi,

my name is Kirill. I’m interested in the contribution to the project 
“Cross-validation and hyper-parameter tuning infrastructure”. I have already 
gone through some starting steps, like building the code and running a few ML 
algorithms (more precisely, I have did it for Linear Regression and Logistic 
Regression). Now I’m going to read rigorously the wiki page "Design Guidelines” 
and to go through the interfaces in the code base . Are there any other 
suggestions how I can start to work on the project? Is there some way to make a 
related small contribution to the code base? 

Briefly about myself. I am a PhD student working on Computational Humor. More 
precisely I’m working on the problem of finding/generating a humorous response 
given a textual input. My programming experience includes two summer 
internships in big Russian IT companies: in one I was programming in C# (SKB 
Kontur), in another I was a C++ developer (Yandex search). In daily life I use 
Python. I have taken the online course Machine Learning by Stanford (Coursera), 
as well as some other courses related to ML (AI by Berkeley (EdX), Deep 
Learning by Google (Udacity), and others).

Best regards,

Kirill Mishchenko



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